Foundation Models Meet Federated Learning: A One-Shot Feature-Sharing Method with Privacy and Performance Guarantees

Abstract

Adapting foundation models for downstream tasks via Federated Learning (FL) is a promising strategy for protecting privacy while leveraging the capability of foundation models. However, FL's iterative training and model transmission result in high communication costs and GPU memory demands, making large foundation models impractical for FL. This paper introduces a one-shot FL method with a server-side performance bound to enable foundation models by reducing communication costs and GPU memory requirements. Our approach, FedPFT (FL with Parametric Feature Transfer), involves clients learning and transferring parametric models for features extracted from frozen foundation models in a single round. Parametric models are then used to generate synthetic features at the server to train a classifier head. We evaluate FedPFT across eight vision datasets using three vision foundation models. Our findings demonstrate that FedPFT is agnostic to data heterogeneity and network topology and it enhances the communication-accuracy frontier up to 7.8\%. Finally, we show FedPFT's compatibility with differential privacy and its resilience against reconstruction attacks. Our work highlights the capability of private, feature-sharing methods for one-shot knowledge transfer using foundation models.

Cite

Text

Beitollahi et al. "Foundation Models Meet Federated Learning: A One-Shot Feature-Sharing Method with Privacy and Performance Guarantees." Transactions on Machine Learning Research, 2025.

Markdown

[Beitollahi et al. "Foundation Models Meet Federated Learning: A One-Shot Feature-Sharing Method with Privacy and Performance Guarantees." Transactions on Machine Learning Research, 2025.](https://mlanthology.org/tmlr/2025/beitollahi2025tmlr-foundation/)

BibTeX

@article{beitollahi2025tmlr-foundation,
  title     = {{Foundation Models Meet Federated Learning: A One-Shot Feature-Sharing Method with Privacy and Performance Guarantees}},
  author    = {Beitollahi, Mahdi and Bie, Alex and Hemati, Sobhan and Brunswic, Leo Maxime and Li, Xu and Chen, Xi and Zhang, Guojun},
  journal   = {Transactions on Machine Learning Research},
  year      = {2025},
  url       = {https://mlanthology.org/tmlr/2025/beitollahi2025tmlr-foundation/}
}